The health and social welfare sector is changing from a provider-oriented to a consumer-oriented customized service system. It is important to use social big data to readily recognize these changes and to identify issues in the health and welfare sector. The use of social big data is on increasing demand as big data analytics has improved rapidly and an ever-growing amount of unstructured big data is available for collection and analysis. In this study, documents were collected monthly and looked at various analysis results to find out what topics are being issued in documents related to “health,” “welfare,” and “social security,” the main keywords in the health and welfare sectors. We also elaborate on the relevant methodologies to extend the utilization of unstructured big data. In this work, we conducted a theoretical review for expanding the utilization of unstructured big data, focusing on embedding methodologies. We examine linkage methods based on embedding methodology, and describe the methodologies of canonical correlation analysis and representation learning and upgrading that are utilized in linkage methodology. Social big data analysis can serve as an important competitive edge in understanding the current situation of issues of national and social interest in the area of health and welfare policy.
Table Of Contents
Abstract 1 요 약 3 제1장 서 론 7 제2장 보건·복지·사회보장 키워드 빅데이터 분석 9 제1절 보건·복지·사회보장 상위 20개 키워드 분석 11 제2절 보건·복지·사회보장 주요 키워드 월별 트렌드 분석 31 제3절 보건·복지·사회보장 키워드 간 순위 비교 41 제3장 보건·복지·사회보장 키워드 클러스터링 분석 47 제4장 비정형빅데이터 활용성 확장을 위한 방법론 연구 61 제1절 비정형데이터와 정형데이터 63 제2절 임베딩방법론 70 제3절 임베딩에 기반한 연계방법론 85 제4절 딥러닝에 기반한 연계방법론 고도화 방안 95 제5장 결론 125 참고문헌 129 부록 133
Local ID
Policy Memos 2020-08
ISBN
9788968277535
KIHASA Research Subject Classification
General social security > Health and welfare digitization